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Improving the Estimation of Coronary Artery Disease by Classification Machine Learning Algorithm

Hamzeh GhorbaniUniversity of Traditional Medicine of Armenia (UTMA),Faculty of General Medicine,Yerevan,Armenia,0040Alla KrasnikovaYerevan State medical university,Faculty of Medicine,Department of Cardiology,Yerevan,Armenia,0031Parvin GhorbaniAhvaz Jundishapur University of Medical Sciences,Faculty of Medicine,Department of Cardiology,Ahvaz,IranSimin GhorbaniAhvaz Jundishapur University of Medical Sciences,Faculty of Nursing,Department of Nursing and Midwifery,Ahvaz,IranHarutyun S. HovhannisyanYerevan State Medical University,Department of Internal Disease Propaedeutics,Yerevan,ArmeniaArsen MinasyanUniversity of Traditional Medicine of Armenia (UTMA),Faculty of General Medicine,Yerevan,Armenia,0040Natali MinasianYaroslavl State Medical University,Faculty of General Medicine,Yaroslavl,RussiaMehdi Ahmadi AlvarShahid Chamran University,Faculty of Engineering,Department of Computer Engineering,Ahwaz,IranHarutyun StepanyanUniversity of Traditional Medicine of Armenia (UTMA),Faculty of General Medicine,Yerevan,Armenia,0040Mohammazreza AzodiniaDoctoral School of Applied Informatics and Applied Mathematics, Obuda University,Budapest,Hungary
2023en
ABI

Аннотация

This research paper aims to predict coronary artery disease (CAD) using data from 350 patients collected at one of the hospitals in Armenia. CAD is a critical parameter which can have a significant impact on patients' life and survival. The study considers several input variables, including level of cholesterol (LOC), patient's age (PA), type of chest pain (TCP), number of arteries blocked (NAB), sex (S), and family history (FH), to make accurate predictions. To achieve this crucial task of CAD prediction, the researchers employed three powerful classification algorithms: Random Forest (RF), Support Vector Machine (SVM), and Logistic Regression (LR). Among these, the Random Forest algorithm stands out for its robustness and numerous advantages, including high accuracy, ability to handle outliers effectively, provision of feature importance insights, and reduced risk of overfitting. The research findings presented in this article demonstrate the impressive performance of the Random Forest algorithm, showcasing an accuracy value of 0.95 and a precision value of 0.94. These results indicate the model's ability to make precise and reliable predictions, essential when dealing with a life-or-death parameter like CAD. By conducting a comparative analysis based on statistical parameters, the researchers establish that Random Forest outperforms both SVM and LR. Thus, the conclusion drawn from the study suggests that the ranking of the algorithms based on their performance is as follows: RF > SVM > LR.

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